Understanding interactions between populations: Individual based modelling and quantification using pair correlation functions
Authored by J E F Green, S Dini, B J Binder
Date Published: 2018
DOI: 10.1016/j.jtbi.2017.11.014
Sponsors:
Australian Research Council (ARC)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Understanding the underlying mechanisms that produce the huge variety of
swarming and aggregation patterns in animals and cells is fundamental in
ecology, developmental biology, and regenerative medicine, to name but a
few examples. Depending upon the nature of the interactions between
individuals (cells or animals), a variety of different large-scale
spatial patterns can be observed in their distribution; examples include
cell aggregates, stripes of different coloured skin cells, etc. For the
case where all individuals are of the same type (i.e., all interactions
are alike), a considerable literature already exists on how the
collective organisation depends on the inter-individual interactions.
Here, we focus on the less studied case where there are two different
types of individuals present. Whilst a number of continuum models of
this scenario exist, it can be difficult to compare these models to
experimental data, since real cells and animals are discrete. In order
to overcome this problem, we develop an agent-based model to simulate
some archetypal mechanisms involving attraction and repulsion. However,
with this approach (as with experiments), each realisation of the model
is different, due to stochastic effects. In order to make useful
comparisons between simulations and experimental data, we need to
identify the robust features of the spatial distributions of the two
species which persist over many realisations of the model (for example,
the size of aggregates, degree of segregation or intermixing of the two
species). In some cases, it is possible to do this by simple visual
inspection. In others, the features of the pattern are not so clear to
the unaided eye. In this paper, we introduce a pair correlation function
(PCF), which allows us to analyse multi-species spatial distributions
quantitatively. We show how the differing strengths of inter-individual
attraction and repulsion between species give rise to different spatial
patterns, and how the PCF can be used to quantify these differences,
even when it might be impossible to recognise them visually. (C) 2017
Elsevier Ltd. All rights reserved.
Tags
selfish herd
Zebrafish
systems
Aggregation
In-vitro
Pigment pattern-formation
Turing patterns
Cell-movement
Nonlocal model
Stripe